An Evaluation of Medication Adherence in Tuberculosis Patients
Based on Theory of Planned Behavior
Novian Mahayu Adiutama
1
, Muhammad Amin
2
and Abu Bakar
1
1
Faculty of Nursing Universitas Airlangga, Kampus C Mulyorejo, Surabaya, Indonesia
2
Faculty of Medicine Universitas Airlangga Kampus C Mulyorejo, Surabaya, Indonesia
Keywords: Attitude, Behavior, Medication Adhrence, Theory of Planned Behavior, Tuberculosis.
Abstract: Medication adherence in TB (tuberculosis) becomes a crucial factor in achieving success of treatment. The
aim of this study was to assess the medication adherence of TB patients and to identify the predictors based
on TPB (Theory of Planned Behavior). Cross-sectional studies were conducted in patients of TB with
positive AFB (Acid-Fast Bacilli) test at a hospital in Pacitan District (N = 113), (n = 104) patient agreed to
participate this study. Recruitment of the respondent was used total sampling method. Data collection was
conducted from November 2017 to February 2018. The instrument in this study was developed in
accordance with standard guideline of TPB, medication adherence was measured using MMAS-8. Multiple
linear regression used to identify predictors. Mean score of medication adherence was 4.09 (SD = 0.936)
(range of possible score = 1-8). ATB (Attitude Toward Behavioral) (p = 0,02), SN (Subjective Norm) (p =
0.00), and PBC (Perceived Behavior Control) (p = 0.00) significantly predicted intention (R Square = 0965),
then intention may affect medication adherence (p = 0.00). The constructs of TPB, namely ATB, SN, PBC,
and Intention significantly predicted medication adherence of TB patients. This study supports an
investigation about the factors underlying medication adherence on a larger scale, as well as the
identification of targets in designing future interventions.
1 BACKGROUND
Tuberculosis is an infectious disease that becomes a
major health concern (Pang et al., 2018).
Tuberculosis control with the DOTS strategy has
been implemented in many countries since 1995, but
still remains global problem which is difficult to be
solved (WHO, 2015).
Indonesia is one of the world largest tuberculosis
contributors, ranks second after India which is 10%
of all patients in the world (WHO, 2015). This
becomes very serious problem because of its long
treatment period and requires high adherence of the
patients.
Drug resistance is one result of poor medication
adherence, either due to dose problems or failure in
completing treatment program (Guix-Comellas et
al., 2017). The average of patient adherence in long-
term treatment program in developed countries is
only 50%, while lower numbers are found in
developing countries (WHO, 2015). Adherence of
treatment program has an important role to prevent
transmission, death from TB, recurrence and drug
resistance (Addisu et al., 2014). The measurement of
adherence is important in order to achieve the
success of treatment (Browne et al., 2018).
TB patients are required to have high adherence
in treatment program as an effort to reduce the
burden of TB. Therefore, this study is intended to
measure TB treatment adherence and identify factors
that may affect adherence itself.
This study was used Theory of Planned Behavior
(TPB) as the conceptual framework. TPB explains
that intention is a direct predictor of behavior, which
in this case is behavior of TB patient in completing
their treatment programs. While the intention itself
comes from the main factors of TPB, namely ATB,
SN, and PBC (Ajzen, 2005). The main factors of
TBP are shown to have a close relationship with the
intention(Miller et al., 2015). The constructs of TBP
can predict a person's intentions until behavior is
formed (Peleg et al., 2017).
Thus, the idea in this study is Theory of Planned
Behavior can also explain how medication
adherence in TB patients. In this study, we explore
factors associated with medication adherence in TB
428
Adiutama, N., Amin, M. and Bakar, A.
An Evaluation of Medication Adherence in Tuberculosis Patients Based on Theory of Planned Behavior.
DOI: 10.5220/0008326204280434
In Proceedings of the 9th International Nursing Conference (INC 2018), pages 428-434
ISBN: 978-989-758-336-0
Copyright
c
2018 by SCITEPRESS Science and Technology Publications, Lda. All rights reserved
patients based on the construct of TPB. The aim of
this study was to assess the medication adherence of
TB patients and to identify the predictors based on
TPB (Theory of Planned Behavior).
2 METHODS
2.1 Respondent and Procedure
Cross-sectional studies were conducted in patients of
TB with positive AFB (Acid-Fast Bacilli) test at a
hospital in Pacitan District (N = 113). Recruitment
of the respondent was used total sampling method.
Data collection was conducted from November 2017
to February 2018. Respondents consisted of all TB
patients with positive AFB and were over 15 years
of age. Patients with co-morbid conditions (such as,
psychiatric illness, neoplasia) and patients who did
not complete the questionnaire were excluded from
the study. A total of (n = 104) from 113 eligible
respondents agreed to participate this study
(recruitment rate 92.03%). The informed consent
was obtained from all respondents before they
participate in this study. This study protocol has
been approved by the Indonesian Commission of
Health Research Ethics.
2.2 Instrument
Questionnaire was used in data collection process.
The medication adherence was measured using
MMAS-8(Morrisky Medication Adherence Scale-8),
while ATB, SN, PBC, and Intention were measured
using instruments developed from standard
instruments of TPB.
2.2.1 Medication Adherence
The medication adherence was measured using
MMAS-8 (Morisky et al., 2008) that has been
modified as needed. The instrument was written in
Indonesian, and there was 8 items of questions with
a range of scores each question (0-1). The score
were summed, and the higher score showed the
higher adherence level. This questionnaire has been
tested for its validity and reliability. Validity test
used pearson product moment with 5% significance
level, and the result showed that all item of the
questionnaire are valid. Reliability test used alpha
cronbach with 5% significance level, and the result
showed reliable.
2.2.2 Attitude Toward Behavioral
The measurement of this variable was used the
instrument which consist of 10 questions, and it is
divided into 2 paired sections. The first section was
the questions about outcome evaluation as many as 5
items of questions, and the second section was about
strenght beliefs as many as 5 items of questions.
Range of scores each question (1-7) (Semantic
Differential). ATB scores were calculated using the
following formula (Ajzen, 1991):
AB = b
i
e
i
Keterangan:
AB : Attitude Toward Behavioral
b
i
: Strengt beliefs
e
i
: Outcome evaluation
2.2.3 Subjective Norm
The measurement of this variable was used the
instrument which consist of 10 questions, and it is
divided into 2 paired sections. The first section was
the questions about motivation to comply as many as
5 items of questions, and the second section was
about normative beliefs as many as 5 items of
questions.
Range of scores each question (1-7) (Semantic
Differential). SN scores were calculated using the
following formula(Ajzen, 1991):
SN = n
i
. m
i
Keterangan:
SN : Subjective norm
Attitude
Toward
Behavioral
Subjective
Norms
Perceived
Behavioral
Control
Intention Behavior
Figure 1: Construct of theory of planned behavior.
An Evaluation of Medication Adherence in Tuberculosis Patients Based on Theory of Planned Behavior
429
n
i
: normative beliefs
m
i
: motivation to comply
2.2.4 Perceived Behavior Control
The measurement of this variable was used the
instrument which consist of 10 questions, and it is
divided into 2 paired sections. The first section was
the questions about beliefs control as many as 5
items of questions, and the second section was about
power beliefs as many as 5 items of questions.
Range of scores each question (1-7) (Semantic
Differential). PBC scores were calculated using the
following formula(Ajzen, 1991):
PBC = c
i
. p
i
Keterangan:
SN : Subjective norm
c
i
: control beliefs
p
i
: Power beliefs
2.2.5 Intention
The Intention questionnaires which modified from
TPB Quissionariewas used as the measurement of
intention (Ajzen, 1991). Modifications were made to
the question form as well as the content of the
questions to match the theme of the study, so the
researchers tested the validity and reliability of the
questionnaire, and the results showed that the
questionnaire was valid and reliable.
This variable measurement questionnaire
consists of 10 question items. Range of scores for
each question (1-7) (Sisctematic Differential). The
score were summed, and the higher the score
showed the higher the intention level.
2.3 Statistical Analysis
Data were analyzed using SPSS version 22. Multiple
linear regression was used to identify the ATB, SN,
PBC variables contribution to Iintention. Simple
linear regression was used to determine the effect of
intention on medication adherence, and the direct
effect of PBC on medication adherence.
Confounding variables in this study were gender,
education, occupation, and age. The specified
significance level was p <0.05.
3 RESULTS
Socio demographic characteristics in table 1 showed
a total of 104 respondents in this study gave a
response of 100%. The average age of respondents
was 43.65 years. More than half of respondents
(54.8%) were male. A total of 63.3% of respondents
had graduated from elementary school, 29.8%
graduated from high school, and 1.9% graduated
from college. Most respondents (71.2%) work as
private employees, 3.8% of civil servants, 1.9%
police/military, and 23.1% were not employed.
Table 1: Predicting medication adherence from demographic characteristics (n = 104).
Frequency (%) Mean SD Sig.
Age
Gender:
Male
Female
Education
Elementary school
High school
College
Occupation
Civil servants
Private employees
Police/military
Not employed
57
47
71
31
2
4
74
2
24
54.8
45.2
68.3
29.8
1.9
3.8
71.2
1.9
23.1
43.65 14.47 .011
.989
.000
.004
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430
Pearson correlation analysis showed that there was no significant relationship between gender with
medication adherence (p = 0.989), while age,
education status, and occupation were closely related
to medication adherence: age (p = 0.011), education
status (p = 0.00), occupation (p = 0.004).
The mean score of medication adherence as
showed in table 2 was 4.09 (SD = 0.93) (range of
possible score = 0-8). According to the results of the
questionnaire analysis, 4 respondents (3.8%)
sometimes had forgotten to take their medicine. 2
respondents (1.9%) sometimes had not taken the
drug in the last 2 weeks.
Twenty one respondents (20.2%) had not taken
the medicine without telling the doctor because their
condition became worse after taking the medicine.
97 respondents (93.3%) sometimes forgot to bring
medicine while traveling. 98 respondents (94.2%)
feel disturbed or uncomfortable having to take
medicine every day for a long time. 99 respondents
(95.2%) had the desire to stop taking the medication
Table 2: Medication adherence of TB patiens (n = 104).
Item No (f) (%) Yes (f) (%)
1. Do you sometimes forget to take your pills?
2. Over the past 2 weeks, were there any days when you did not take your
medicine?
3. Have you ever cut back or stopped taking your medication without
telling your doctor because you felt worse when you took it?
4. When you travel or leave home, do you sometimes forget to bring along
your medications?
5. Taking medication everyday is a real inconvenience for some people. Do
you ever feel hassled about sticking to your treatment plan?
6. When you feel better, do you sometimes stop taking your medicine?
7. Did you take your medicine yesterday?
8. How often do you have difficulty remembering to take all your
medication?
100
102
83
7
6
5
0
18
96.2
98.1
79.8
6.7
5.8
4.8
0
17.3
4
2
21
97
98
99
104
86
3.8
1.9
20.2
93.3
94.2
95.2
100
82.7
Table 3: Frequency distribution of TPB construct.
TPB Construct Mean Median SD Range of Possible Score
Attitude toward behavioral.
Subjective norm.
Perceived behavior control.
Intention.
Behavior (medication adherence of TB patients).
98.65
103.05
137.42
44.65
4.09
93
100
135
44
4
31.11
28.74
21.18
5.77
.93
5 – 245
5 – 245
5 – 245
7 – 70
0 – 8
Table 4: Predicting intention from ATB, SN, and PBC.
R Square B Sig.
Attitude toward behavioral, subjective norm, and percieved
behavior control (
simultaneously).
Attitude toward behavioral.
Subjective norm.
Perceived behavior control.
.965
.041
.074
.110
.000
.020
.000
.000
*Dependent variable: Intention.
Table 5: Predicting medication adherence from
intention and direct from PBC.
R Square B Sig.
Intention.
Perceived behavior
control.
.975
.977
.160
.044
.000
.000
*Dependent variable: Medication adherence of TB
patients.
An Evaluation of Medication Adherence in Tuberculosis Patients Based on Theory of Planned Behavior
431
if they was already healed. The day before filling out
the questionnaire, all the respondents (100%) took
their medicine. 86 respondents (82.7%) had
difficulties in remembering that they should take all
TB medication.
The effect of ATB, SN, and PBC on intention:
The mean of each variable was 98.65 (SD = 31.11)
for ATB variables (range of possible score = 5-245),
103.05 (SD = 28.74) for SN variable (range of
possible score = 5-245), 137.42 (SD = 21.18) for
PBC variable (rang of possible score = 5-245), 44.65
(SD = 5.77) for intention variables (range of possible
score = 7-70).
Multiple linear regression analysis showed that
ATB, SN, and PBC were simultaneously significant
in predicting intention (p = 0.00) (R Square = 0.96),
when viewed from the significance level separately
were (p = 0.02) for ATB, (p = 0.00) for SN, and (p =
0.00) for PBC.
The effect of intention on medication adherence:
Simple linear regression analysis showed that
intention significantly affected medication
adherence (p = 0.00) with (R Square = 0.97).
The direct relationship between PBC with
medication adherence: Simple linear regression
analysis showed that PBC significantly affected
medication adherence (p = 0.00) with (R Square =
0.98).
4 DISCUSSION
Based on this study result, the mean score was 4.09
in the medication adherence of TB patients (range of
possible score 0 - 8), it has been known that
medication adherence has an important role to
prevent transmission, death from TB, recurrence and
drug resistance (Addisu et al., 2014). The analysis of
questionnaire in this study showed that 94.2% of
respondents feel disturbed and uncomfortable with
treatment program of TB that requires them to take
their medication every day for a long time, perhaps
because of the lack of social and psychological
support from their family and their nearest person as
documented in some previous research.A study in
South Africa showed that good social support can
improve adherence in TB patients (Akeju, Wright
and Maja, 2017). Social and psychological
interventions should be optimized to improve
medication adherence in TB patients (Yan et al.,
2017). Good medication adherence can be achieved
by utilizing social influences through education in
family members about how to support medication
adherence to their family (Kopelowicz et al., 2015).
N
otes: Statistics reported next to arrows are standardized regression coefficients
*ρ < 0.001 ; **ρ < 0.05
Fi
g
ure 2. Extended TPB construct to
p
redict medication adherence
Attitude Toward
Behavioral
Subjective Norms
Perceived Behavioral
Control
Intention
Behavior
(Medication
Adherence)
β = .218**
β = .369*
β = .404*
β = .988*
β = .989*
INC 2018 - The 9th International Nursing Conference: Nurses at The Forefront Transforming Care, Science and Research
432
In this study, socio-demographic factors (such as
age, education, and occupation) were correlated with
medication adherence, but not by gender. It is also
reported in a study that the social situation of each
individual can affect medication adherence in TB
patients (Akeju, Wright and Maja, 2017). In addition
to adequate treatment, treatment of TB patients
should pay attention to specific mental and social
needs (Kastien-Hilka et al., 2017). Psychosocial
treatment and other interventions need to be done in
difficult patients (Priwitzer, 2018), and also the
interventions should focus on improving social and
family function (Yin et al., 2018).
The aim of this study was to identify factors that
affect the medication adherence of TB patients based
on Theory of Planned Behavior. The results of the
study showed that the main factors of TPB (such as
ATB, SN, and PBC) explain more than 96% of the
other studies have also suggested that TPB became
positive determinant factor related to adherence (Wu
and Liu, 2016), TPB was also helpful to investigate
factors underlying medication adherence (Bérubé et
al., 2017), so that TPB can be used as powerful tool
to predict intention and medication adherence
(Zomahoun et al., 2016).
This study has limitations because it only
measures medication adherence and does not
measure prevention of transmission and nutritional
compliance, for the further research it is advisable to
measure these variables because considering the
importance of prevention of transmission and
nutritional compliance in the case of tuberculosis.
5 CONCLUSIONS
Based on the discussion above, it can be concluded
that medication adherence of TB patients in
respondents was at low level. Socio-demographic
and constructive factors of TPB can affect the
medication adherence of TB patients, there was also
a direct relationship of PBC with medication
adherence without intention. This study helps health
professionals and researchers in understanding the
medication adherence of TB patients using TPB.
This study supports an investigation about the
factors underlying medication adherence on a larger
scale, as well as the identification of targets in
designing future interventions.
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